Physical layer methods for privacy provision in distributed control and inference

Shalabh Jain, Tuan Ta, J. Baras
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引用次数: 2

Abstract

Distributed control, decision and inference schemes are ubiquitous in many current technological systems ranging from sensor networks, collaborative teams of humans and robots, and information retrieval systems. Privacy, both location and identity, is critical for many of these systems and applications. The principal thesis investigated in this paper is that the utilization of physical layer methods and implementation techniques substantially strengthens privacy in the associated algorithms and systems. In fact it is argued that without the utilization of such physical layer methods it may be expensive to have provable levels of security in these systems. We analyze the performance of such physical layer techniques. We then utilize these techniques to provide provable privacy in distributed control, decision and inference algorithms. We demonstrate the results in context of distributed Kalman filtering. We develop useful metrics to measure privacy in these distributed systems. We investigate quantitatively the effects of privacy loss on the performance of the systems.
分布式控制和推理中提供隐私的物理层方法
分布式控制、决策和推理方案在当前许多技术系统中无处不在,包括传感器网络、人类和机器人的协作团队以及信息检索系统。隐私,包括位置和身份,对于许多这样的系统和应用程序都是至关重要的。本文研究的主要论点是,物理层方法和实现技术的利用大大加强了相关算法和系统中的隐私。事实上,有人认为,如果不使用这种物理层方法,在这些系统中具有可证明的安全级别可能是昂贵的。我们分析了这些物理层技术的性能。然后,我们利用这些技术在分布式控制、决策和推理算法中提供可证明的隐私。我们在分布式卡尔曼滤波的背景下证明了结果。我们开发了有用的指标来衡量这些分布式系统中的隐私。我们定量地研究了隐私损失对系统性能的影响。
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